Applied AI-Enhanced RF Interference Rejection
Rahul Jain, Pierre Trepagnier, Rick Gentile, Joey Botero, Alexia Schulz

TL;DR
This paper demonstrates that AI, specifically transformer-based models, significantly improves RF interference rejection, enabling clearer signal recovery in complex interference environments with high throughput and low latency.
Contribution
It introduces a transformer-based AI approach for RF interference suppression that outperforms previous models like WaveNet in speed and effectiveness.
Findings
Transformer models enable faster inference than WaveNet.
Interference mitigation improves speech quality metrics like PESQ.
Lightweight GPUs achieve real-time processing in tactical RF scenarios.
Abstract
AI-enhanced interference rejection in radio frequency (RF) transmissions has recently attracted interest because deep learning approaches trained on both the signal of interest (SOI) and the signal mixture (SOI plus interference) can outperform traditional approaches which only consider the SOI. The goal is to detect, demodulate, and decode signals over a range of signal-to-interference-plus-noise (SINR) levels without having a detailed, design-level knowledge of the interfering signal or the propagation conditions. Our present AI interference suppression results are based on Autoregressive Transformer Decoder models which exhibit orders of magnitude faster throughput at inference time than WaveNet models developed in earlier work. As a specific example, we investigate an analog FM "Walkie Talkie" radio signal of interest in the presence of an Orthogonal Frequency-Division Multiplexing…
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